[ALGORITHM]
@article{xiao2020audiovisual,
title={Audiovisual SlowFast Networks for Video Recognition},
author={Xiao, Fanyi and Lee, Yong Jae and Grauman, Kristen and Malik, Jitendra and Feichtenhofer, Christoph},
journal={arXiv preprint arXiv:2001.08740},
year={2020}
}
config | n_fft | gpus | backbone | pretrain | top1 acc/delta | top5 acc/delta | inference_time(video/s) | gpu_mem(M) | ckpt | log | json |
---|---|---|---|---|---|---|---|---|---|---|---|
tsn_r18_64x1x1_100e_kinetics400_audio_feature | 1024 | 8 | ResNet18 | None | 19.7 | 35.75 | x | 1897 | ckpt | log | json |
tsn_r18_64x1x1_100e_kinetics400_audio_feature + tsn_r50_video_320p_1x1x3_100e_kinetics400_rgb | 1024 | 8 | ResNet(18+50) | None | 71.50(+0.39) | 90.18(+0.14) | x | x | x | x | x |
Notes:
- The gpus indicates the number of gpus we used to get the checkpoint. It is noteworthy that the configs we provide are used for 8 gpus as default. According to the Linear Scaling Rule, you may set the learning rate proportional to the batch size if you use different GPUs or videos per GPU, e.g., lr=0.01 for 4 GPUs x 2 video/gpu and lr=0.08 for 16 GPUs x 4 video/gpu.
- The inference_time is got by this benchmark script, where we use the sampling frames strategy of the test setting and only care about the model inference time, not including the IO time and pre-processing time. For each setting, we use 1 gpu and set batch size (videos per gpu) to 1 to calculate the inference time.
- The values in columns named after "reference" are the results got by training on the original repo, using the same model settings.
For more details on data preparation, you can refer to Kinetics400 in Data Preparation.
You can use the following command to train a model.
python tools/train.py ${CONFIG_FILE} [optional arguments]
Example: train ResNet model on Kinetics-400 audio dataset in a deterministic option with periodic validation.
python tools/train.py configs/audio_recognition/tsn_r50_64x1x1_100e_kinetics400_audio_feature.py \
--work-dir work_dirs/tsn_r50_64x1x1_100e_kinetics400_audio_feature \
--validate --seed 0 --deterministic
For more details, you can refer to Training setting part in getting_started.
You can use the following command to test a model.
python tools/test.py ${CONFIG_FILE} ${CHECKPOINT_FILE} [optional arguments]
Example: test ResNet model on Kinetics-400 audio dataset and dump the result to a json file.
python tools/test.py configs/audio_recognition/tsn_r50_64x1x1_100e_kinetics400_audio_feature.py \
checkpoints/SOME_CHECKPOINT.pth --eval top_k_accuracy mean_class_accuracy \
--out result.json
For more details, you can refer to Test a dataset part in getting_started.
For multi-modality fusion, you can use the simple script, the standard usage is:
python tools/analysis/report_accuracy.py --scores ${AUDIO_RESULT_PKL} ${VISUAL_RESULT_PKL} --datalist data/kinetics400/kinetics400_val_list_rawframes.txt --coefficient 1 1
- AUDIO_RESULT_PKL: The saved output file of
tools/test.py
by the argument--out
. - VISUAL_RESULT_PKL: The saved output file of
tools/test.py
by the argument--out
.